# How can I fairly choose an item from a list?

Let's say that I have a list of prizes:

PrizeA PrizeB PrizeC

And, for each of them, I want to draw a winner from a list of my attendees.

Give that my attendee list is as follows:

user1, user2, user3, user4, user5

What is an unbiased way to choose a user from that list?

Clearly, I will be using a cryptographically secure pseudo-random number generator, but how do I avoid a bias towards the front of the list? I assume I will not be using modulus?

EDIT
So, here is what I came up with:

``````class SecureRandom
{
private RNGCryptoServiceProvider rng = new RNGCryptoServiceProvider();

private ulong NextUlong()
{
byte[] data = new byte[8];
rng.GetBytes(data);
return BitConverter.ToUInt64(data, 0);
}

public int Next()
{
return (int)(NextUlong() % (ulong)int.MaxValue);
}

public int Next(int maxValue)
{
if (maxValue < 0)
{
throw new ArgumentOutOfRangeException("maxValue");
}

if (maxValue == 0)
{
return 0;
}

ulong chop = ulong.MaxValue - (ulong.MaxValue % (ulong)maxValue);

ulong rand;

do
{
rand = NextUlong();
} while (rand >= chop);

return (int)(rand % (ulong)maxValue);
}
}
``````

BEWARE:

`Next()` Returns an int in the range [0, int.MaxValue]
`Next(int.MaxValue)` Returns an int in the range [0, int.MaxValue)

-
do a modulus on the 10 th bit, or use a better random number generator. What is wrong with modulus as long as you know the size? You can write a unit test which will make sure that your resulting distribution is decent. However, in some rare parallel universe you can get a million zeros in a row. ;) –  Hamish Grubijan Dec 17 '09 at 3:21
Pardon my ignorance, but why would a "RNG" have a bias? –  Esteban Araya Dec 17 '09 at 4:00
It wouldn't, necessarily. Using modulus would. –  John Gietzen Dec 17 '09 at 4:13

Pseudocode for special random number generator:

``````rng is random number generator produces uniform integers from [0, max)
compute m = max modulo length of attendee list
do {
draw a random number r from rng
} while(r >= max - m)
return r modulo length of attendee list
``````

This eliminates the bias to the front part of the list. Then

``````put the attendees in some data structure indexable by integers
for every prize in the prize list
draw a random number r using above
compute index = r modulo length of attendee list
return the attendee at index
``````

In C#:

``````public NextUnbiased(Random rg, int max) {
do {
int r = rg.Next();
} while(r >= Int32.MaxValue - (Int32.MaxValue % max));
return r % max;
}

public Attendee SelectWinner(IList<Attendee> attendees, Random rg) {
int winningAttendeeIndex = NextUnbiased(rg, attendees.Length)
return attendees[winningAttendeeIndex];
}
``````

Then:

``````// attendees is list of attendees
// rg is Random
foreach(Prize prize in prizes) {
Attendee winner = SelectWinner(attendees, rg);
Console.WriteLine("Prize {0} won by {1}", prize.ToString(), winner.ToString());
}
``````
-
Does the same function exist for the PSRNG class? –  John Gietzen Dec 17 '09 at 3:21
Also, this is tagged language-agnostic. ;) –  John Gietzen Dec 17 '09 at 3:21
PSRNG class? Addressed the language-agnostic issue. –  Jason Dec 17 '09 at 3:26
Oh, i see what you did with the modulus, scraping off the top set of the numbers... –  John Gietzen Dec 17 '09 at 3:48
Roger, using that method. –  John Gietzen Dec 17 '09 at 3:48

You can buy truly random bits from a provider, or use a mechanical device.

-

Assuming a fairly distributed random number generator...

``````do {
i = rand();
} while (i >= RAND_MAX / 5 * 5);
i /= 5;
``````

This gives each of 5 slots

[ 0 .. RAND_MAX / 5 )
[ RAND_MAX / 5 .. RAND_MAX / 5 * 2 )
[ RAND_MAX / 5 * 2 .. RAND_MAX / 5 * 3 )
[ RAND_MAX / 5 * 3 .. RAND_MAX / 5 * 4 )
[ RAND_MAX / 5 * 4 .. RAND_MAX / 5 * 5 )

and discards a roll which falls out of range.

-

You have already seem several perfectly good answers that depend on knowing the length of the list in advance.

To fairly select a single item from a list without needing to know the length of the list in the first place do this:

`````` if (list.empty()) error_out_somehow
r=list.first()          // r is a reference or pointer
s=list.first()          // so is s
i = 2
while (r.next() is not NULL)
r=r.next()
if (random(i)==0) s=r  // random() returns a uniformly
// drawn integer between 0 and i
i++
return s
``````

(Useful if you list is stored as a linked list)

To distribute prizes in this scenario, just walk down the list of prizes selecting a random winner for each one. (If you want to prevent double winning you then remove the winner from the participant list.)

Why does it work?

1. You start with the first item at `1/1`
2. On the next pass, you select the second item half the time (`1/2`), which means that the first item has probability `1 * (2-1)/2 = 1/2`
3. on further iteration, you select the nth item with probability `1/n`, and the chance for each previous item is reduced by a factor of `(n-1)/n`

which means that when you come to the end, the chance of having the `m`th item in the list (of `n` items) is

``````1/m * m/(m+1) * (m+1)/(m+2) * ... * (n-2)/(n-1) * (n-1)/n = 1/n
``````

and is the same for every item.

If you are paying attention, you'll note that this means walking the whole list every time you want to select an item from the list, so this is not maximally efficient for (say) reordering the whole list (though it does that fairly).

-

I suppose one answer would be to assign each item a random value, and take the largest or smallest, drilling down as necessary.

I'm not sure if this is the most efficient, tho...

-

If you're using a good number generator, even with a modulus your bias will be miniscule. If, for instance, you're using a random number generator with 64 bits of entropy and five users, your bias toward the front of the array should be on the order of 3x10^-19 (my numbers may be off, by I don't think by much). That's an extra 3-in-10-quintillion likelihood of the first user winning compared to the later users. That should be good enough to be fair in anyone's book.

-
A "very minuscule" bias will not be good enough for my users. –  John Gietzen Dec 17 '09 at 3:25

Here you will find Oleg Kiselyov's discussion of purely functional random shuffling.

A description of the linked content (quoted from the beginning of that article):

This article will give two pure functional programs that perfectly, randomly and uniformly shuffle a sequence of arbitrary elements. We prove that the algorithms are correct. The algorithms are implemented in Haskell and can trivially be re-written into other (functional) languages. We also discuss why a commonly used sort-based shuffle algorithm falls short of perfect shuffling.

You could use that to shuffle your list and then pick the first item of the shuffled result (or maybe you'd prefer not to give two prizes two the same person -- then use n initial positions of the result, for n = number of prizes); or you could simplify the algorithm to just produce the first item; or you could take a look around that site, because I could have sworn there's an article on picking one random element from an arbitrary tree-like structure with uniform distribution, in a purely functional way, proof of correctness provided, but my search-fu is failing me and I can't seem to find it.

-

Without truly random bits, you will always have some bias. The number of ways to assign prizes to guests is much larger than any common PRNG's period for even a fairly low number of guests and prizes. As suggested by lpthnc, buy some truly random bits, or buy some random-bit-generating hardware.

As for the algorithm, just do a random shuffle of the guest list. Be careful, as naive shuffling algorithms do have a bias: http://en.wikipedia.org/wiki/Shuffling#Shuffling%5Falgorithms

-
Truly random - has to be truly random and UNIFORM, not Gaussian. –  Hamish Grubijan Dec 17 '09 at 3:48
I'm not sure what you're referring to. Truly random bits are not Gaussian. en.wikipedia.org/wiki/Hardware_random_number_generator –  thouis Dec 17 '09 at 11:57

You can 100% reliably pick a random item from any arbitrary list with a single pass and without knowing how many items are in the list ahead of time.

# Psuedo Code:

``````count = 0.0;
item_selected = none;

foreach item in list
count = count + 1.0;
chance = 1.0 / count;
if ( random( 1.0 ) <= chance ) then item_selected = item;
``````

Test program comparing results of a single rand() % N vs iterating as above:

``````#include "stdafx.h"
#include <stdio.h>
#include <stdlib.h>
#include <memory.h>

static inline float frand01()
{
return (float)rand() / (float)RAND_MAX;
}

int _tmain(int argc, _TCHAR* argv[])
{
static const int NUM_ITEMS = 50;

int resultRand[NUM_ITEMS];
int resultIterate[NUM_ITEMS];

memset( resultRand, 0, NUM_ITEMS * sizeof(int) );
memset( resultIterate, 0, NUM_ITEMS * sizeof(int) );

for ( int i = 0; i < 100000; i++ )
{
int choiceRand = rand() % NUM_ITEMS;

int choiceIterate = 0;
float count = 0.0;
for ( int item = 0; item < NUM_ITEMS; item++ )
{
count = count + 1.0f;
float chance = 1.0f / count;
if ( frand01() <= chance )
{
choiceIterate = item;
}
}

resultRand[choiceRand]++;
resultIterate[choiceIterate]++;
}

printf("Results:\n");
for ( int i = 0; i < NUM_ITEMS; i++ )
{
printf( "%02d - %5d %5d\n", i, resultRand[i], resultIterate[i] );
}

return 0;
}
``````

Output:

``````Results:
00 -  2037  2050
01 -  2038  2009
02 -  2094  1986
03 -  2007  1953
04 -  1990  2142
05 -  1867  1962
06 -  1941  1997
07 -  2023  1967
08 -  1998  2070
09 -  1930  1953
10 -  1972  1900
11 -  2013  1985
12 -  1982  2001
13 -  1955  2063
14 -  1952  2022
15 -  1955  1976
16 -  2000  2044
17 -  1976  1997
18 -  2117  1887
19 -  1978  2020
20 -  1886  1934
21 -  1982  2065
22 -  1978  1948
23 -  2039  1894
24 -  1946  2010
25 -  1983  1927
26 -  1965  1927
27 -  2052  1964
28 -  2026  2021
29 -  2090  1993
30 -  2039  2016
31 -  2030  2009
32 -  1970  2094
33 -  2036  2048
34 -  2020  2046
35 -  2010  1998
36 -  2104  2041
37 -  2115  2019
38 -  1959  1986
39 -  1998  2031
40 -  2041  1977
41 -  1937  2060
42 -  1946  2048
43 -  2014  1986
44 -  1979  2072
45 -  2060  2002
46 -  2046  1913
47 -  1995  1970
48 -  1959  2020
49 -  1970  1997
``````
-
This will very heavily weight the beginning of the list, and will also fail to pick an item. For example, Imagine a list with just a singe item in it. –  John Gietzen Dec 13 '11 at 21:01
Actually not. (ok so it should have read <= chance not < chance) It picks 1 item 100% of the time. 50% chance for each of two, 33% chance for three etc. Even though it starts out picking things at 100% the odds work out the same as if you picked at random knowing how many things there are. This logic is the answer to a Microsoft programming test. –  Alturis Dec 13 '11 at 21:47
Here is a test program to prove it: –  Alturis Dec 13 '11 at 22:15
Ah, OK. I see how this works. This is cool, but is not really what I was looking for. –  John Gietzen Dec 13 '11 at 22:43
Although dmckee's answer is the same and more efficient. It is faster to do rand() % N == 0 than to mess with the floating point precision stuff. –  Alturis Dec 14 '11 at 14:41